Zhang Xu, Tian Yun, Chen Letian, Hu Xu, Zhou Zhen
School of Chemical Engineering, Zhengzhou University, Zhengzhou 450001, P. R. China.
School of Materials Science and Engineering, Institute of New Energy Material Chemistry, Renewable Energy Conversion and Storage Center (ReCast), Key Laboratory of Advanced Energy Chemistry (Ministry of Education), Nankai University, Tianjin 300350, P. R. China.
J Phys Chem Lett. 2022 Sep 1;13(34):7920-7930. doi: 10.1021/acs.jpclett.2c01710. Epub 2022 Aug 18.
Designing and screening novel electrocatalysts, understanding electrocatalytic mechanisms at an atomic level, and uncovering scientific insights lie at the center of the development of electrocatalysis. Despite certain success in experiments and computations, it is still difficult to achieve the above objectives due to the complexity of electrocatalytic systems and the vastness of the chemical space for candidate electrocatalysts. With the advantage of machine learning (ML) and increasing interest in electrocatalysis for energy conversion and storage, data-driven scientific research motivated by artificial intelligence (AI) has provided new opportunities to discover promising electrocatalysts, investigate dynamic reaction processes, and extract knowledge from huge data. In this Perspective, we summarize the recent applications of ML in electrocatalysis, including the screening of electrocatalysts and simulation of electrocatalytic processes. Furthermore, interpretable machine learning methods for electrocatalysis are discussed to accelerate knowledge generation. Finally, the blueprint of machine learning is envisaged for future development of electrocatalysis.
设计和筛选新型电催化剂、在原子水平上理解电催化机制以及揭示科学见解是电催化发展的核心。尽管在实验和计算方面取得了一定的成功,但由于电催化系统的复杂性以及候选电催化剂化学空间的广阔性,实现上述目标仍然困难重重。凭借机器学习(ML)的优势以及对用于能量转换和存储的电催化的兴趣日益增加,由人工智能(AI)推动的数据驱动型科学研究为发现有前景的电催化剂、研究动态反应过程以及从海量数据中提取知识提供了新的机会。在这篇综述中,我们总结了ML在电催化中的最新应用,包括电催化剂的筛选和电催化过程的模拟。此外,还讨论了用于电催化的可解释机器学习方法,以加速知识生成。最后,展望了机器学习在电催化未来发展中的蓝图。